The Univariate Marginal Distribution Algorithm Copes Well With Deception and Epistasis
July 16, 2020 ยท Declared Dead ยท ๐ Evolutionary Computation
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Authors
Benjamin Doerr, Martin S. Krejca
arXiv ID
2007.08277
Category
cs.NE: Neural & Evolutionary
Citations
34
Venue
Evolutionary Computation
Last Checked
3 months ago
Abstract
In their recent work, Lehre and Nguyen (FOGA 2019) show that the univariate marginal distribution algorithm (UMDA) needs time exponential in the parent populations size to optimize the DeceptiveLeadingBlocks (DLB) problem. They conclude from this result that univariate EDAs have difficulties with deception and epistasis. In this work, we show that this negative finding is caused by an unfortunate choice of the parameters of the UMDA. When the population sizes are chosen large enough to prevent genetic drift, then the UMDA optimizes the DLB problem with high probability with at most $ฮป(\frac{n}{2} + 2 e \ln n)$ fitness evaluations. Since an offspring population size $ฮป$ of order $n \log n$ can prevent genetic drift, the UMDA can solve the DLB problem with $O(n^2 \log n)$ fitness evaluations. In contrast, for classic evolutionary algorithms no better run time guarantee than $O(n^3)$ is known (which we prove to be tight for the ${(1+1)}$ EA), so our result rather suggests that the UMDA can cope well with deception and epistatis. From a broader perspective, our result shows that the UMDA can cope better with local optima than evolutionary algorithms; such a result was previously known only for the compact genetic algorithm. Together with the lower bound of Lehre and Nguyen, our result for the first time rigorously proves that running EDAs in the regime with genetic drift can lead to drastic performance losses.
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